Tag: aws

If you are like us here at UnifyID then you’re really passionate about programming, programming languages and their runtimes. You will argue passionately about how Erlang has the best Distributed Systems model (2M TCP connections in one box), Haskell has the best type system, and how all our ML back-end should be written in Lua (Torch). If you are like me and you start a company with other people, you will argue for hours, and nobody’s feelings are gonna be left intact.

That was the first problem we had in the design phase of our Machine Learning back-end. The second problem will become obvious when you get a short introduction to what we do at UnifyID:

We data-mine a lot of sensors on your phone, do some signal processing and encryption on the phone, then opportunistically send the data from everybody’s phone into our Deep-Learning backend where the rest of the processing and actual authentication take place.

These are expensive machines and we’re a startup with finite money, so here’s the second problem; Scalability. We don’t want these machines sitting around when no jobs are scheduled and we also don’t want them struggling when a traffic spike hits. This is a classic auto-scaling problem.

This post describes how we killed two birds;

Many programming runtimes for DL.

Many machines.

With one stone. By utilizing the sweeping force of Docker microservices! This has been the next big thing in distributed systems for a while, Twitter and Netflix use this heavily and this talk is a great place to start. Since we have a lot of factors we verify against like Facial Recognition, Gait Analysis and Keystroke Analysis, it made sense to make them modular. We packaged each one in its own container, wrote a small HTTP server that satisfies the following REST API and done!

This API can be useful because every Machine Learning algorithm has pretty much the same API; training inputs, normal inputs and outputs. It’s so useful we decided to open-source our microservice wrapper for Torch v7/Lua and for Python. Hopefully more people can use it and we can all start forking and pushing entire machine learning services in dockerhub.

But wait, there’s more! Now that we containerized our ML code, the scalability problem has moved from a development problem to an infrastructure problem. To handle scaling each microservice according to their GPU and Network usage, we rely on Amazon ECS. We looked into Kubernetes, as a way to load-balance containers, however its support for NVIDIA GPU based load-balancing is not there yet (There’s a MR and some people who claim they made it work). Mesos was the other alternative, with NVIDIA support, but we just didn’t like all the Java.

In the end, this is how our ML infrastructure looks like.

Top-down approach to scalable ML microservices

Those EB trapezoids represent Amazon EB (Elastic Beanstalk), another Amazon service which can replicate machines (even GPU heavy machines!) using custom-set rules. The inspiration for load-balancing our GPU cluster with ECS and EB came from this article from Amazon’s Personalization team.

For our Database we use a mix of Amazon S3 and a traditional PostgreSQL database linked and used as a local cache for each container. This way, shared data becomes as easy as sharing S3 paths, while each container can modularly keep its own state in PostgreSQL.

So there you have it, both birds killed. Our ML people are happy since they can write in whatever runtime they want as long as there is an HTTP server library for it. We don’t really worry about scalability as all our services are small and nicely containerized. We’re ready to scale to as many as 100,000 users and I doubt our microservices fleet would even flinch. We’ll be presenting our setup in the coming Dockercon 2017 (hopefully, waiting for the CFP to open) and we’re looking to hire new ML and full-stack engineers. Come help us bring the vision of passwordless implicit authentication to everyone!